Loop Strategies and Application of Rough Set Theory in Robot Soccer Game

The robot soccer game is full of challenging in the field of robot and artificial intelligence. Strategy is a kernel subsystem of the game. According to the strategy description in our work, there exists a problem of loop strategies. We present the concept of condition-decision relation matrix by which the loop strategies can be found. Together with rough set theory, we illustrate the creation process of consistent decision table and validate our method by an experiment of loop strategies detection.

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